A Comparative Study for Stock Market Forecast Based on a New Machine Learning Model

Enrique González-Núñez, Luis A. Trejo, Michael Kampouridis
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Abstract

This research aims at applying the Artificial Organic Network (AON), a nature-inspired, supervised, metaheuristic machine learning framework, to develop a new algorithm based on this machine learning class. The focus of the new algorithm is to model and predict stock markets based on the Index Tracking Problem (ITP). In this work, we present a new algorithm, based on the AON framework, that we call Artificial Halocarbon Compounds, or the AHC algorithm for short. In this study, we compare the AHC algorithm against genetic algorithms (GAs), by forecasting eight stock market indices. Additionally, we performed a cross-reference comparison against results regarding the forecast of other stock market indices based on state-of-the-art machine learning methods. The efficacy of the AHC model is evaluated by modeling each index, producing highly promising results. For instance, in the case of the IPC Mexico index, the R-square is 0.9806, with a mean relative error of 7×10−4. Several new features characterize our new model, mainly adaptability, dynamism and topology reconfiguration. This model can be applied to systems requiring simulation analysis using time series data, providing a versatile solution to complex problems like financial forecasting.
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基于新机器学习模型的股市预测比较研究
本研究旨在应用人工有机网络(AON)--一种受自然启发的、有监督的、元启发式机器学习框架--开发一种基于该机器学习类的新算法。新算法的重点是基于指数跟踪问题(ITP)对股票市场进行建模和预测。在这项工作中,我们提出了一种基于 AON 框架的新算法,我们称之为人工卤素化合物(Artificial Halocarbon Compounds),简称 AHC 算法。在这项研究中,我们通过预测八个股票市场指数,将 AHC 算法与遗传算法(GA)进行了比较。此外,我们还对基于最先进的机器学习方法预测其他股市指数的结果进行了交叉参考比较。通过对每个指数进行建模,评估了 AHC 模型的功效,结果非常令人满意。例如,就墨西哥 IPC 指数而言,R 方为 0.9806,平均相对误差为 7×10-4。我们的新模型有几个新特点,主要是适应性、动态性和拓扑重组。该模型可应用于需要使用时间序列数据进行仿真分析的系统,为金融预测等复杂问题提供了多功能解决方案。
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